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Research Article

Polyline simplification using a region proposal network integrating raster and vector features

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Article: 2275427 | Received 16 Dec 2022, Accepted 20 Oct 2023, Published online: 30 Oct 2023
 

ABSTRACT

Polyline simplification is crucial for cartography and spatial database management. In recent decades, various rule-based algorithms for vector polyline simplification have been proposed. However, most existing algorithms lack parameter self-adaptive capabilities and require repeated manual parameter adjustments when applied to different polylines. While deep-learning-based methods have recently been introduced for raster polyline image simplification, they cannot achieve end-to-end simplification when the input data and output results are vector polylines. This paper proposes a new deep-learning-based method for vector polyline simplification by integrating both the vector and raster features of the polyline. Specifically, a deep separable convolutional residual neural network was first used to extract the convolutional features of each image. Then, the region proposal network was modified to generate proposal boxes using vector coordinates, and these proposal boxes were used to locate the convolutional feature maps of bends. Finally, convolutional feature maps were fed into a binary classification network to identify unimportant vertices that should be omitted for vector polyline simplification. The experimental results indicated that the proposed method can exploit raster and vector features to achieve automatic and effective polyline simplification without prior map generalization knowledge and manual settings of rules and parameters. The polyline simplification results of the proposed method have a higher compression ratio of coordinate points and lower shape deformation and deviation than the results generated by the classic Wang and Müller (WM) algorithm and Support Vector Machine (SVM) based algorithm, which shows the potential of the proposed method for future applications in map generalization.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Data availability statement

The experimental data used in this study are available in the coastline dataset GSHHG (Wessel and Smith Citation1996) (http://www.soest.hawaii.edu/wessel/gshhg).

Additional information

Funding

This work was supported by the Key Laboratory of Geological Survey and Evaluation of Ministry of Education [GLAB2020ZR11]; National Natural Science Foundation of China [42171408].